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Divide and Conquer — How to Deal With Complex Datasets

Real-life data is messy, complex, and hard to understand! Let’s see how we can make it a little simpler!

Photo by Lysander Yuen on Unsplash

One of my favourite approaches to dealing with large, complex problems is to break them down into smaller, more manageable sub-problems. This makes it easier to focus on the important bits without…




Skil AI team Engineering Publications

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Thilina Rajapakse

Thilina Rajapakse

AI researcher, avid reader, fantasy and Sci-Fi geek, and fan of the Oxford comma.

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